1 / 22

Science institutions and open data: opportunities and barriers

Science institutions and open data: opportunities and barriers. Paul N. Edwards School of Information, University of Michigan . World Weather Watch. initial planning early 1960s operational about 1968 satellites added ~1980 . IPCC 4 th assessment (2007).

warner
Download Presentation

Science institutions and open data: opportunities and barriers

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Science institutions and open data:opportunities and barriers Paul N. Edwards School of Information, University of Michigan

  2. World Weather Watch • initial planning early 1960s • operational about 1968 • satellites added ~1980

  3. IPCC 4th assessment (2007)

  4. Infrastructural inversionMaking data global • Köppen 1881: fewer than 100 stations • Callendar 1938: about 200 stations • Willett 1950: 183 stations • Callendar 1961: 450 stations • Mitchell 1963: 183 stations • Jones et al. 1986: 2194 stations • Brohan et al. 2006: 4349 stations • Muller et al. (in preparation): 39,340 stations (and climbing!)

  5. ERA-CLIM data recovery and digitization focus on pre-1957 meteorological data in sensitive regions

  6. IPCC AR4 (2007), Fig. 3.1

  7. Distance matters (Olson & Olson, 2000) • Physical • More likely to share and trust data with others in own lab • Face-to-face work is more efficient • Local concerns usually trump remote ones • Temporal • Software ecologies change • Metadata may not exist, or be insufficient • Figurative • Distant disciplines understand less about what data represent, potential problems or virtues

  8. Trust

  9. Hierarchies and incentives where your reputation matters most

  10. Hierarchies and incentives pays your salary decides on your tenure

  11. Infrastructure: a historical model • System building • Technology transfer and growth • Locations, domains • Variation and competition • Network formation: gateways • The “modern infrastructural ideal”: universal service by a single monopoly provider • Internetworks or webs • Decentralization, fragmentation, tiering time

  12. Gateways

  13. Meta-institutions as data gateways • World Weather Watch • World Climate Research Program • Earth System Grid • Long Term Ecological Research Network • and hundreds of others…

  14. Meta-meta-institutions • Global Earth Observing System of Systems (GEOSS) • Global Organization of Earth System Science Portals (GO-ESSP) • …and many others

  15. “Metadata is nobody’s job” — S.L. Star • Scientists? • Data managers? • Crowds? • Young people? • Social scientists? • Metadata as product vs. metadata as process • human communication, often informal, is still the most basic process for data sharing

  16. Data aren’t data without software • Journal of Money, Credit and Banking • required publication of code and data • McCullough, McGeary, & Harrison (2006) • Examined ~150 articles • 58 had some data and/or code • only 15 could be replicated using what was provided • Incentives and credit systems for data and software

  17. Incentives:current academic reputation system data sharing software slide: James Howison

  18. Incentives: crediting academic software and data work? for software, also read “data” slide: James Howison

  19. Career incentives vs. external mandates • NSF, NIH, others mandate data publication… • …but career incentives are for research results • Building software for science • by scientists • by professional support services • Maintenance, maintenance, and more maintenance • data curation

  20. Solutions? • Virtual organizations? • Crowdsourcing? • Open source software as a model? • dangers of reasoning by analogy • Metadata standards? • “Young people will know how to do it”? • iSchools? • Science departments? • Science informatics programs (CS + iSchool + domain sciences)?

More Related